Semi-supervised Learning in Distributed Split Learning Architecture and IoT Applications

Mahdi Barhoush, Ahmad Ayad, A. Schmeink
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引用次数: 2

Abstract

In the era of big data, new learning techniques are emerging to solve the difficulties of data collection, storage, scalability, and privacy. To overcome these challenges, we propose a distributed learning system that merges the hybrid edge-cloud split-learning architecture with the semi-supervised learning scheme. The proposed system based on three semisupervised learning algorithms (FixMatch, Virtual Adversarial Training, and MeanTeacher) is compared to the supervised learning scheme and trained on different datasets and data distributions (IID and non-IID) and with a variable number of clients. The new system could efficiently utilize the local unlabeled samples on the client side and gave a performance encouragement that exceeds 30% in most cases even with small percentage of labelled data. Additionally, certain Split-SSL algorithms showed performance that was on par with or occasionally even better than more resource-intensive algorithms, although requiring less processing power and convergence time.
分布式分裂学习架构和物联网应用中的半监督学习
在大数据时代,新的学习技术不断涌现,以解决数据收集、存储、可扩展性和隐私性等难题。为了克服这些挑战,我们提出了一种将混合边缘云分裂学习架构与半监督学习方案相结合的分布式学习系统。提出的系统基于三种半监督学习算法(FixMatch, Virtual Adversarial Training和MeanTeacher),并将其与监督学习方案进行比较,并在不同的数据集和数据分布(IID和非IID)上进行训练,并使用可变数量的客户端。新系统可以有效地利用客户端本地未标记的样本,即使在很小比例的标记数据下,大多数情况下也能提供超过30%的性能激励。此外,某些Split-SSL算法的性能与资源密集的算法相当,有时甚至比它们更好,尽管需要更少的处理能力和收敛时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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